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Evaluation of cheating detection methods in academic writings

机译:评价学术著作中的作弊检测方法

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This paper aims to focus on plagiarism and the consequences of anti-plagiarism services such as Turnitin.com, iThenticate, and PlagiarismDetect.com in detecting the most recent cheatings in academic and other writings. Design/methodology/approach: The most important approach is plagiarism prevention and finding proper solutions for detecting more complex kinds of plagiarism through natural language processing and artificial intelligence self-learning techniques. Findings: The research shows that most of the anti-plagiarism services can be cracked through different methods and artificial intelligence techniques can help to improve the performance of the detection procedure. Research limitations/implications: Accessing entire data and plagiarism algorithms is not possible completely, so comparing is just based on the outputs from detection services. They may produce different results on the same inputs. Practical implications: Academic papers and web pages are increasing over time, and it is very difficult to capture and compare documents with all available data on the network in an up to date manner. Originality/value: As many students and researchers use the plagiarism techniques (e.g. PDF locking, ghost-writers, dot replacement, online translators, previous works, fake bibliography) to cheat in academic writing, this paper is intended to prevent plagiarism and find suitable solutions for detecting more complex kinds of plagiarism. This should also be of grave concern to teachers and librarians to provide up to date/standard anti-plagiarism services. The paper proposes some new solutions to overcome these problems and to create more resilient and intelligent future systems.
机译:本文旨在关注on窃以及Turnitin.com,iThenticate和PlagiarismDetect.com等反pla窃服务在检测学术和其他著作中的最新作弊行为时的后果。设计/方法/方法:最重要的方法是防止窃,并通过自然语言处理和人工智能自学技术找到适当的解决方案,以检测更复杂的of窃。结果:研究表明,大多数的抗-窃服务可以通过不同的方法来破解,而人工智能技术可以帮助提高检测程序的性能。研究的局限性/意义:不可能完全访问整个数据和窃算法,因此比较仅基于检测服务的输出。在相同的输入上,它们可能会产生不同的结果。实际意义:学术论文和网页随时间增长,并且很难以最新的方式捕获和比较网络上所有可用数据的文档。原创性/价值:由于许多学生和研究人员使用academic窃技术(例如PDF锁定,幽灵编写器,点替换,在线翻译,以前的作品,假书目)在学术写作中作弊,因此本文旨在防止窃并找到合适的作法。解决更复杂的抄袭问题的解决方案。对于教师和图书馆员来说,提供最新/标准的抗anti窃服务也应引起人们的极大关注。本文提出了一些新的解决方案,以克服这些问题并创建更具弹性和智能的未来系统。

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